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#46 Silly & Empowering Statistics, with Chelsea Parlett-Pelleriti

Learning Bayesian Statistics

CHAPTER

The Top Ten Methods to Use for Sparse Models

Lasso is basically a form of regularization. It's like putting a prior on your regression coefficiente. There are packages in r and python that you can apply corrections to p values, which is mostly what people are looking for when they're doing e selective inference. And ten, looking at sparse models. That tends to be my number one suggestion in terms of accessibility for people who are willing to dig a little deeper.

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